AI & Data Analytics Evaluation Lead

Data Freelance Hub
Harlow
1 week ago
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A reputable evaluation organization is seeking an Evaluation Officer specializing in AI & Data Analytics. This position involves conducting project evaluations, liaising with stakeholders, and applying AI tools for enhanced decision-making. Candidates must hold a relevant advanced degree and have a minimum of five years of professional experience in evaluation, particularly in international finance or development. Strong English proficiency is essential, and knowledge of additional languages is a plus. The role is located in Hare Street, England, and offers an opportunity to contribute to significant evaluation efforts.
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